An automated method with anchor-free detection and U-shaped segmentation for nuclei instance segmentation

X. Feng, Lijuan Duan, Jie Chen
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引用次数: 2

Abstract

Nuclei segmentation plays an important role in cancer diagnosis. Automated methods for digital pathology become popular due to the developments of deep learning and neural networks. However, this task still faces challenges. Most of current techniques cannot be applied directly because of the clustered state and the large number of nuclei in images. Moreover, anchor-based methods for object detection lead a huge amount of calculation, which is even worse on pathological images with a large target density. To address these issues, we propose a novel network with an anchor-free detection and a U-shaped segmentation. An altered feature enhancement module is attached to improve the performance in dense target detection. Meanwhile, the U-Shaped structure in segmentation block ensures the aggregation of features in different dimensions generated from the backbone network. We evaluate our work on a Multi-Organ Nuclei Segmentation dataset from MICCAI 2018 challenge. In comparisons with others, our proposed method achieves state-of-the-art performance.
基于无锚检测和u型分割的核实例自动分割方法
细胞核分割在肿瘤诊断中起着重要的作用。由于深度学习和神经网络的发展,数字病理学的自动化方法变得流行。然而,这一任务仍然面临挑战。由于图像的聚类状态和大量的核,目前大多数技术都不能直接应用。此外,基于锚点的目标检测方法需要大量的计算量,对于目标密度较大的病理图像更是如此。为了解决这些问题,我们提出了一种具有无锚检测和u形分割的新型网络。附加一改型特征增强模块以改进密集目标检测的性能。同时,分割块的u型结构保证了骨干网生成的不同维数特征的聚合。我们评估了我们在MICCAI 2018挑战的多器官核分割数据集上的工作。与其他方法相比,我们提出的方法达到了最先进的性能。
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